Department of Plant and Microbial Biology, University of Minnesota, St Paul, MN 55108, USA.
Department of Agronomy, University of Wisconsin, Madison, WI 56706, USA.
Trends Plant Sci. 2019 Dec;24(12):1075-1082. doi: 10.1016/j.tplants.2019.07.004. Epub 2019 Jul 31.
Improvement of agricultural species has exploited the genetic variation responsible for complex quantitative traits. Much of the functional variation is regulatory, in cis-regulatory elements and trans-acting factors that ultimately contribute to gene expression differences. However, the identification of gene regulatory network components that, when modulated, will increase plant productivity or resilience, is challenging, yet essential to provide increased predictive power for genome engineering approaches that are likely to benefit useful traits. Here, we discuss the opportunities and limitations of using data obtained from gene coexpression, transcription factor binding, and genome-wide association mapping analyses to predict regulatory interactions that impact crop improvement. It is apparent that a combination of information from these data types is necessary for the reliable identification and utilization of important regulatory interactions that underlie complex agronomic traits.
农业物种的改良利用了负责复杂数量性状的遗传变异。大部分功能变异是顺式调控元件和反式作用因子中的调控变异,这些最终导致了基因表达的差异。然而,确定基因调控网络组件,当这些组件被调节时,将增加植物的生产力或弹性,这是具有挑战性的,但对于提供增加基因组工程方法的预测能力是必要的,这些方法可能有益于有用的性状。在这里,我们讨论了使用从基因共表达、转录因子结合和全基因组关联作图分析中获得的数据来预测影响作物改良的调控相互作用的机会和限制。显然,这些数据类型的信息的结合对于可靠地识别和利用复杂农艺性状的重要调控相互作用是必要的。